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Abstract:
Optimizing power purchase model is an effective way to reduce cost of power purchase to the minimum, which can meet the purchased profits to the greatest degree. Therefore research of power purchase model and algorithm optimization is of vital practical significance for power purchaser. This paper first takes total expense from many power suppliers as an objective function, the model of power purchase for power companies is established, which synthetically considers supply and demand, and transfer capability constraints. It is very complex to deal with these problems by classical optimization method such as the simplex method and the Lagrangian relaxation method. Their basic shortcomings are long searching time and hard finding globe optimal solution. The particle swarm optimization (PSO) algorithm is applied to solve the model which makes sure that the solution is global optimal, then introduces a novel PSO algorithm which is modified by means of restricting the search tactics, simultaneously considering the non-continual variables, and through ordering the power suppliers in advance. The improved particle swarm optimization algorithm makes the search more direct and faster. Numerical simulation results show that the improved PSO algorithm has advantages both in effectiveness and efficiency. It is capable of obtaining higher quality solution efficiently and also saves considerable costs, furthermore, the algorithm is versatile and robust, and has merits of higher reliability and speed of convergence than other methods. Therefore, it is concluded that the algorithm is supposed to be an effective way to deal with the optimized issue in the power market, and has a wide potential application in power market.
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High Voltage Engineering
ISSN: 1003-6520
CN: 42-1239/TM
Year: 2006
Issue: 11
Volume: 32
Page: 131-134
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 0
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